engaging the scholar: three types of academic consulting ... · academic consulting is widely...
TRANSCRIPT
Electronic copy available at: http://ssrn.com/abstract=1133581Electronic copy available at: http://ssrn.com/abstract=1133581
This version July 2008 – accepted to appear in Research Policy (in press).
Engaging the scholar: three types of academic consulting and their impact on
universities and industry
Markus PERKMANN and Kathryn WALSH
Wolfson School of Mechanical and Manufacturing Engineering
Loughborough University
Loughborough LE11 3TU (UK)
phone +44 1509 22 76 74
Abstract: We present a conceptual framework of academic consulting and explore its
impacts on universities and the benefits to innovating firms. We distinguish between
three types of academic consulting: opportunity-driven, commercialization-driven and
research-driven. Exploring the implications of these different types, firstly, we postulate
that consulting has limited impact on biasing academic research towards more ‘applied’
themes. Secondly, while we expect research-driven consulting activities to be positively
associated with research productivity, opportunity-driven consulting will have a
negative impact. Thirdly, we differentiate between different functions of academic
consulting for different types of firms.
Keywords: academic consulting, faculty consulting, university-industry relations,
commercialization, science technology interface
2
Electronic copy available at: http://ssrn.com/abstract=1133581Electronic copy available at: http://ssrn.com/abstract=1133581
1. Introduction
While in some quarters debates are raging about the possibility of ‘engaged scholarship’
(Van De Ven and Johnson, 2006), the relevance of academic knowledge has long been
established in many areas of economic activity. Much research has focused on
technology transfer and academic entrepreneurship (Shane, 2004). Yet as the multiplex
nature of university-industry relationships is increasingly recognized, attention has
shifted to forms of interaction that involve direct collaboration between academics and
industry (Cohen et al., 2002; Perkmann and Walsh, 2007). Such collaboration
encompasses licensing with inventor collaboration (Agrawal, 2006), university-industry
research centres (Adams et al., 2001) and collaborative research (Behrens and Gray,
2001).
Among these collaborative forms of interaction, academic consulting is widely
practiced yet it appears largely uncaptured and unstudied (Bercovitz and Feldman,
2006; Cohen et al., 2002). What role does consulting play within the overall spectrum of
university-industry interactions? A detailed reading of the literature reveals an
incomplete picture, specifically concerning the relationship between academics’
research and their consulting engagements. Some authors report positive feedback
effects between research productivity and involvement with industrial partners
(Mansfield, 1995; Van Looy et al., 2004). Others are sceptical as they point to the
detractive effects of industry collaboration for academic research (Behrens and Gray,
2001; Slaughter and Leslie, 1997). Surveys also suggest that at least some academics
hesitate to engage with industry, fearing that commercial orientation might distract from
academic relevance (Howells et al., 1998; Lee, 1996).
3
Electronic copy available at: http://ssrn.com/abstract=1133581
These inconsistencies suggest that academic consulting is perhaps practiced in different
forms and for different reasons. The primary objective we pursue in this paper is to
develop a typology of academic consulting that distinguishes between different ways in
which academics offer their expertise to external organizations. We then develop
propositions relating to the effects of different types of academic consulting.
Specifically, we address three questions. Firstly, to what extent does consulting change
the direction of research towards more ‘applied’ topics, hence potentially undermining
the long-term benefits of autonomous, curiosity-driven research (Merton, 1973)?
Secondly, does consulting distract academics from doing research or do they in fact go
hand in hand? Commonly, consulting is regarded as rather unrelated to state-of-the-art
academic research (Howells et al., 1998) yet, simultaneously, consulting appears to be
practiced by high-performing academics (Mansfield, 1995). Thirdly, how does
academic consulting contribute to innovation processes within firms? While much
emphasis in the literature is on the transfer of technology as an output of leading-edge
academic research, consulting may involve the mobilization of more common expertise
required especially at the latter stages of the innovation cycle (Feller, 1999).The
question is then what role consulting plays for firms, and what firms are most likely to
profit from this specific type of knowledge transfer.
We pursue our objective by developing a theoretical paper building on prior literature
whereby we focus on academic consulting in the science and technology fields. Existing
conceptual models and empirical evidence are inconclusive, indicating the need for
theoretical exploration and synthesis (Kilduff, 2006). We develop a threefold typology
that is derived from academics’ motivation to engage in consulting and distinguishes
between opportunity-driven, commercialization-driven and research-driven consulting.
Subsequently, we address each of the research questions and develop propositions on
4
the impact of these different forms of academic consulting. We conclude with
implications for universities and policy-makers.
2. Identifying types of academic consulting
We define academic consulting as the provision of a service by academics to external
organizations on commercial terms. This may involve providing advice, resolving
problems as well as generating or testing new ideas. Consulting is usually provided
individually by academics. By contrast, contract research tends to be collectively
performed by research groups although the distinction is blurred in practice (Schmoch,
1999).
Academic consulting is widely practiced (D'Este and Patel, 2007; Meyer-Krahmer and
Schmoch, 1998). Many universities encourage staff to provide consulting by allowing
them to spend usually 20% of their time on outside activities (Schmoch, 1999). In the
UK, total university income from consulting translated into an average of GBP 2,458
per academic staff member in 2006 (HEFCE, 2007).1 An average US full-time faculty
member earned an additional annual income of approximately USD 2,200 in 2003.2
These figures underestimate the real volume as many engagements may not be disclosed
to university administrators. Observers estimate that more than half of engineering
faculty at the top 20 US research universities spend 10-15% of their time on consulting
(Abramson et al., 1997: 101). Consulting has also been held responsible for the
considerable share of US patents filed by academics yet assigned to firms rather than
universities (Thursby et al., 2007).
1 Compiled from HEFCE (2007) and www.hefce.ac.uk (accessed 4/2/2008).
2 National Center for Education Statistics (http://nces.ed.gov, accessed: 10/04/07)
5
In the following, we develop a typology based on existing literature. Underlying the
typology is the assumption that academics are motivated to engage in consulting by
different rationales. Consulting constitutes discretionary individual behaviour and
different motivations will result in different activities. We postulate that consulting can
be motivated by income considerations, the desire to commercialize inventions or the
intention to generate research opportunities. Apart from motivation, two additional
aspects appear relevant for characterizing different types of consulting. Firstly, one can
expect differences in the type of knowledge exchanged or generated during consulting
activities. Secondly, we consider the structure of the relationships within which
consulting activities are pursued (Table 1).
-------------------------
(Table 1 about here)
-------------------------
2.1 Opportunity-driven consulting
Academics might engage in consulting by responding to personal income opportunities.
Such an income-oriented view is predominant in an older US debate (Boyer and Lewis,
1984; Rebne, 1989). It is also implicit in life cycle theories predicting that junior
researchers focus on building an academic career while they capitalize on their expertise
by engaging with industry later on (Stephan and Levin, 1992). For academics, the
marginal cost of providing consulting is relatively low as they possess the required
expertise already, allowing them to appropriate rents.
Academics are specialists in certain areas of expertise and firms therefore engage them
to resolve specific problems (Gibbons and Johnston, 1974). In this view, consulting
differs from other university-industry relationships in that it mobilizes expertise that is
6
commonly held within academic communities (Agrawal and Henderson, 2002). Rather
than commercializing the latest discoveries, it leverages ‘old science’ (Gibbons and
Johnston, 1974; Rosenberg, 1994). Such consulting resolves problems and provides
improvements rather than suggesting new project ideas or pioneering new design
configurations (Cohen et al., 2002). To achieve this, academics will not need much prior
knowledge about the client organization and its technology, and – in terms of the
relationship – assignments might therefore be short-term and time-bound.
Opportunity-driven consulting is not necessarily complementary with academic
research. Indeed, it is usually seen to be of lesser academic value (Boyer and Lewis,
1984) as it does not directly contribute to research or teaching. A UK survey suggests
that the barriers for academics to engage in consulting are somewhat different from
those for collaborative research (Howells et al., 1998). The statement that consultancy
work was ‘not interesting’ was ranked top, and ‘lack of career impact’ was ranked third
among the barriers to consulting activities indicating that academics perceive a trade-off
between consulting and their primary interests.
Yet some dissonant evidence suggests that opportunity-driven consulting is not the only
logic inherent in academic consulting. Belgian data indicate that researchers involved in
contract research generally published more than their ‘pure’ academic colleagues while
their research activities were not visibly skewed towards more ‘applied’ themes (Van
Looy et al., 2004). Others argued that academics’ decisions to engage in consulting
were not primarily driven by financial motives and that consulting academics are at
least as academically active as their non-consulting peers (Boyer and Lewis, 1984;
Patton and Marver, 1979). Below, we therefore consider two alternative views on
consulting.
7
2.2 Commercialization-driven consulting
Consulting can also be linked to academics’ efforts to commercialize their own
technologies (Agrawal, 2006; Shane, 2004). Hiring inventors as consultants constitutes
an obvious option for a licensee to access their expertise. Inventor involvement is
critical for the commercial success of university-generated technologies which are often
embryonic. According to a US survey, 71% of outlicensed inventions (including to
spin-offs) required inventor assistance for being successfully commercialized (Thursby
et al., 2001). Inventors commonly retain their faculty position and work with the
commercializing entity via consulting, contract research, personnel exchange and
advisory board presence (Goldfarb and Henrekson, 2003). In addition to spin-off
companies, large existing firms licensing university technology also benefit from
inventor collaboration. A US study showed that approximately 40% of university
licensees indicated that the technologies could not be successfully commercialized
without faculty co-operation (Thursby and Thursby, 2004). Agrawal (2006) found that
for two thirds of a sample of MIT-owned licenses, academic inventors were involved in
the further development of the technology.
Consulting motivated by commercialization strategies differs from opportunity-driven
consulting in several respects. Inventions will usually be the output of academic
research, possibly pursued over long periods of time. Motivationally, therefore
academics will be driven more intrinsically by the desire to see their inventions flourish
as an extension of their research. Secondly, the relationship between academics and
clients is likely to be a stable arrangement, possibly comprising financial ties (Boyd and
Bero, 2000). The remit of the relationship focuses on a specific project, implying that
the academic might have a position akin to an external member of a development team
who can be called upon when needed.
8
2.3 Research-driven consulting
In a third scenario, consulting activities are directly linked to academics’ research
projects. Academics often maintain consulting relationships with firms supporting their
research. Mansfield (1995) reported that in all industries other than pharmaceuticals,
over half of a sample of highly industry relevant academics said that the problems and
ideas they worked on in their government-funded research often developed out of
consulting. Murray’s (2002) work on tissue engineering also points to a distinct
research-driven logic. She found, like others (Agrawal and Henderson, 2002; Gittelman
and Kogut, 2003), that there is limited network membership overlap between paper-
authoring academics and patent-authoring researchers, suggesting that ‘inventors’ are
different from ‘researchers’. The researchers, however, ‘co-mingle’ with industry in
various ways, including consulting, advisory board membership and sponsored research
(Murray, 2002). Similarly, consulting was found to be a significant predictor of all other
forms of academic entrepreneurship (Louis et al., 1989).
Rather than opportunity-driven income seeking, such consulting is motivated by the
desire to gain insights into industry ‘challenges’ or access research materials. Cohen et
al. (2002) found that firms use academic consulting often in conjunction with other
‘open science’ mechanisms, i.e. conferences, informal interaction and joint research.
This result suggests that such consulting activities are research-driven, in line with
‘Mertonian’ objectives (Merton, 1973). The ensuing relationships will be strongly
socially embedded and characterized by ongoing barter-like interactions (Kreiner and
Schultz, 1993). Therefore, while formal consulting assignments in this context are
remunerated, some occasional and informal advice may be provided in an untraded
manner (Faulkner and Senker, 1994).
9
In terms of the knowledge mediated in this type of relationship, one can expect a strong
emphasis on interactive learning and knowledge co-production (Rosenberg, 1994).
Research-driven consulting represents one of the channels through which
instrumentation and techniques are developed via mutual interaction between industry
and academia (Rosenberg, 1992). Equally, the deep understanding of a firm’s
technology trajectory built through continuous interaction enables academics to provide
advice on strategic R&D decisions. Some scientists have ‘scientific taste’, allowing
them to judge the likely payoff of different lines of research and advise firms
concerning their relative merits (Zucker et al., 1998).
Any typology is only valuable if it can be used for sharply distinguishing between
empirical phenomena. For our typology, this could be done by using questionnaire
scales assessing the incentives underlying academics’ consulting. If additional income is
indicated as the main motivator, this can be classified as opportunity-driven consulting.
Commercialization-driven consulting is indicated by academics’ desire to contribute to
the commercial success to their own inventions. This may well result in additional
income but the consulting activity will be distinct in that it is likely to be much closer to
an academics’ core research interest. Finally, research-driven consulting is indicated by
academics’ intention to learn from industry, access research opportunities and build
contacts.
3. Discussion: effects of academic consulting
We now consider implications for universities and firms. Our propositions are
summarized in Table 2.
-------------------------
(Table 2 about here)
10
-------------------------
3.1 The impact of consulting on the direction of research
Some observers fear that increased industry involvement may shift academics’ research
towards more applied topics with long-term detrimental effects on cumulative basic
science. Blumenthal et al. (1986) reported that a third of biotechnology researchers with
industrial funding - compared to 7% without industrial funding – chose topics for their
short-term research programmes that they expected to have some commercial impact.
Two thirds of surveyed US university-industry research centres stated that industry
exerted a ‘moderate to strong influence’ on the direction of their research – however this
was dependent on the goals they set themselves (Cohen et al., 1994). Gulbrandsen and
Smeby (2005) found that Norwegian researchers with industry funding performed less
basic research than researchers with no such external funds.
However, Hicks and Hamilton (1999) found that the share of basic research at
universities remained unchanged between 1981 and 1995 while university patenting
increased significantly. Other studies (Godin and Gingras, 2000; Brooks and
Randazzese, 1999) reported no evidence of industrial influence on the research direction
of collaborative research. Thursby and Thursby (2002) found that increases in
university licensing were largely due to universities’ greater commercialization efforts
rather than changes in research direction.
These ambiguous results suggest that the degree of industrial bias might be determined
by specific characteristics of interactions in each instance. For instance, it seems
conceivable that publications derived from industry-funded contract research or
collaborative research might be more applied as project objectives result from a
11
compromise between industrial and academic objectives (Webster, 1994). As for
consulting, our typology suggests a differentiated assessment.
Opportunity-driven consulting has the least thematic and relational connection with
research. In thematic terms, the activity requested by clients does not constitute research
but the application of scientific knowledge to a specific problem (Salter and Martin,
2001). Outputs from consulting are therefore rarely suitable or available to be
published. In relational terms, the researcher will in many cases not have a research-
related connection with the firm. Both aspects suggest that engagement in opportunity-
driven consulting will not per se bias an academic’s research towards more applied
topics. Similarly, commercialization-driven consulting is unlikely to skew the research
interests of an academic as they are a follow-on activity to inventive activity – at best
the bias might already be present. In other words, it is the prior inventive activity that is
at the core of academics’ research interests and not the follow-on consulting. We
therefore postulate:
Proposition 1: Academics’ involvement in opportunity-driven and commercialization-
driven consulting does not influence the direction of their research towards more
applied research topics.
To operationalize this proposition, one may relate a measure of involvement in either
type of consulting to a measure expressing the degree of basicness of academics’
publication output. If a significant negative relationship between both measures was
found, the proposition would need to be rejected.
For research-driven consulting matters appear more complex. Here it is useful to
consider under what circumstances academics and industry have a mutual interest to
12
collaborate on research-related matters. Stokes (1997) argued that some research aims to
both resolve practical problems and generate fundamental scientific understanding.
Such ‘Pasteur’ research differs from either applied research (not requiring fundamental
understanding), or basic research (not aimed at problem solving). For instance, this
applies to some biotechnology, computer science or aeronautical engineering. While
research outputs are utilized as inputs to both research and technology development
(Nelson, 2004), problems arising in technology development provide agendas for
follow-on research activities (Rosenberg, 1992). As much technological development
occurs in industry, this circular relationship between science and application requires
constant interaction between the two realms.
These considerations suggest that much research-driven consulting is linked to such
Pasteur-type research. If research is recursively intertwined with technological
development, academics are uniquely placed to offer advice on further development
while industry provides them with research challenges, data, materials and
instrumentation. Hence one would predict that academics involvement in research-
driven consulting would not make their research more applied. Simultaneously, one
would expect research-oriented consulting to be practiced mostly in Pasteur-type fields,
i.e. those fields that combine fundamental scientific understanding with practical usage
considerations.
Proposition 2a: Involvement in research-driven consulting does not influence the
direction of academics’ research towards more applied research topics.
2b: Academics specializing in Pasteur-type fields carry out more research-oriented
consulting than other researchers.
13
For operationalization, one might relate a measure of engagement in research-driven
consulting (e.g. days per year) to a measure expressing an academic’s specialization in
Pasteur-type research, such as their focus on fields with a high proportion of industry
scientists appearing as journal authors. The null hypothesis for 2a is that the volume of
research-oriented consulting by an academic influences the direction of their research.
The null hypothesis for 2b is that academics specializing in Pasteur-type fields do not
differ from other academic in terms of the volume of engagement in research-based
consulting.
3.2 The impact of consulting on research productivity
Previous work has examined the impact of academics’ commercial activities on their
research performance. Engaging in academic entrepreneurship and technology transfer
can be compatible with high scientific productivity (Zucker and Darby, 1996). Agrawal
and Henderson (2002) found that higher patenting rates for scientists can be associated
with higher citation impact for journal publications. An older literature on US factually
consulting found that academics engaging in more consulting were also more
productive in terms of research (Boyer and Lewis, 1984; Louis et al., 1989; Rebne,
1989).
This evidence suggests considerable complementarities between academic output and
involvement in commercialization activities. This view has however been contested by
some authors (Slaughter and Leslie, 1997) and appears counter-intuitive for two reasons
specifically for consulting. First, trade-offs in terms of time and effort can be expected.
Second, secrecy issues might restrict publishing from industrial work, leading to a
tension between the requirements of ‘open science’ and commercial appropriability
considerations (Murray and Stern, 2007). This is especially relevant for consulting
14
activities where outputs usually belong to industrial clients. Both these limitations make
it unlikely that data or insights from consulting directly generate novel publishable
material.
However, involvement with firms may increase the quality and quantity of academics’
research due to increased resources (Zucker and Darby, 1996). A resource-based view is
supported by case study evidence highlighting that spin-off companies are sometimes
used to fund further academic research by their founders (Meyer, 2003). Consulting also
often goes hand in hand with sponsored or collaborative research funded or co-funded
by industrial partners (Mansfield, 1995).
In addition to resource mobilization, consulting can enable access to research-critical
elements such as materials, data drawn from real industrial processes or information on
problems and challenges. This logic will be particularly relevant in the ‘Pasteur’
disciplines of applied science and engineering. Moreover, resource mobilization and
access to research opportunities are likely to be present particularly in situations where
researchers and firms are linked through long-term, socially embedded relationships.
From the viewpoint of the firm, sponsored or collaborative research is a risky
undertaking with no immediate payoff and funds are therefore likely to be given only to
trusted partners who ensure confidentiality and are willing to provide formal or informal
consulting.
To summarize, such circumstances are likely to prevail for research-driven and, to a
degree, commercialization-driven consulting. Opportunity-driven consulting, by
contrast, is less likely to generate these research benefits as it may not occur within the
context of wider relationships. As results are usually not publishable, involvement in
opportunity-driven consulting competes with time spent on research and teaching and
will therefore have a negative impact on publishing output by the academic.
15
Proposition 3a: Involvement in research-driven consulting, and to a lesser extent,
commercialization-driven consulting, are positively associated with research
productivity.
3b: Involvement in opportunity-driven consulting is negatively associated with research
productivity.
To operationalize these propositions, one could relate a time-lagged measure of
academics’ research productivity to a measure of involvement in consulting activities.
The null hypothesis for 3a is that research-driven or commercialization-driven
consulting do not promote research output. The null hypothesis for 3b is that
involvement in opportunity-driven consulting does not hinder research output.
3.3 The role of academic consulting for firms
Why do firms engage academics as consultants? The answer is most obvious for
commercialization-driven consulting provided by academic inventors to the licensees of
university-generated technology. As information contained in patents is often
insufficient for successfully exploiting technology, particularly in novel industries,
valuable expertise tends to be tacit and complex, and hence naturally exclusive (Zucker
et al., 2002). Although the underlying knowledge might not by definition be
uncodifiable, it might be too costly to do so against its perceived value, meaning that it
remains ‘latent’ (Agrawal, 2006). Personal involvement via commercialization-driven
consulting represents a mechanism for firms to ‘capture’ such latent knowledge (Zucker
et al., 2002). This enables firms to enjoy first-mover advantages before the expertise
diffuses via codification. Given the self-interest of the academic consultants in ‘their’
16
technology they are unlikely to be disinterested judges of the risk associated with a
chosen path. Partly because of ‘moral hazard’ on the part of the inventor (Jensen and
Thursby, 2001), commercialization-driven consulting is unlikely to be of strategic, path-
selecting nature.
By contrast, research-driven consulting is attractive to firms that routinely engage with
university researchers, for instance in pharmaceuticals and aerospace (Cohen et al.,
2002) and generally in high-technology industries. Among these, particularly the larger
firms with formal R&D operations have the required absorptive capacity (Cohen and
Levinthal, 1990). The rationale for accessing university-based research for these
companies is to extend in-house basic research and provide windows on emerging
technologies (Santoro and Chakrabarti, 2002). Such organizations often pursue
innovation strategies with high degrees of complexity and uncertainty (Tidd, 2001). The
use of external academic expert judgment within such selection processes represents
one of the mechanisms to reduce uncertainty (Pavitt, 2005). Academics therefore play a
role, similar to entrepreneurship, as ‘knowledge filter’ (Ács et al., 2004), bridging the
link between knowledge creation and its purposeful exploitation.
Opportunity-driven consulting follows a different logic. It may be used by a broader
range of firms and may be overlooked by studies focusing on large R&D-active firms.
Demand for opportunity-driven academic consulting is likely to exist particularly within
smaller firms. Large firms with differentiated R&D, design or production engineering
departments have less need for the type of problem solving capability and issue-centred
advice implicit in opportunity-driven consulting. In smaller firms, innovation is often
more informal and relying on external sources due to the fixed costs involved in
maintaining specialist expertise and equipment.
17
However, for many smaller firms, the main sources of innovation are either internal or
within their vertical supply chains (Mansfield, 1991). For instance, both ‘specialized
supplier’ and ‘supplier-dominated firms’ rely on their vertical value chains for their
innovative inputs (Pavitt, 1984) and are hence less likely to use academics as external
collaborators. By contrast, ‘new technology-based firms’ (NTBFs) focus on specific
proprietary technologies as the basis for their products and services (Bollinger et al.,
1983). NTBFs are the most likely clients for opportunity-based consulting activities as
their focus is primarily on development rather than basic R&D. Such firms, that tend to
be start-ups in sectors such as electronics, instruments, biotechnology and software,
may resort to hiring academics for problem-solving and testing concepts. We synthesise
our discussion below:
Proposition (4a) Commercialization-driven consulting furthers the development of
university technologies licensed by firms;
(4b) Academics’ involvement in research-driven consulting is positively associated with
client firms’ engagement in basic R&D;
(4c) Academics’ involvement in opportunity-driven consulting is positively associated
with client firms’ status as new technology-based firms.
Proposition 4a can be operationalized by relating the success rate of licensed technology
– measured for instance by royalties generated – to the volume of consulting provided
by inventors. The null hypothesis is that the contribution of commercialisation-driven
consulting to successful technology development does not differ from cases where no
consulting or merely non-inventor consulting is provided. Proposition 4b can be
operationalized by relating the volume of academics’ research-based based consulting to
18
a measure of their clients’ engagement in long-term R&D (Laursen and Salter, 2004).
The null hypothesis is that research-based consulting by academics is not promoted by
their client firms’ engagement in R&D. Finally, proposition 4c can be operationalized
by relating the volume of academics’ opportunity-driven consulting to a measure
indicating their clients’ status as new technology based firm, such as being a start-up in
high-tech sectors. The null hypothesis is that opportunity-driven consulting is not
promoted by firms’ status as new technology-based firms.
6. Conclusions
We identified three types of academic consulting: opportunity-driven,
commercialization-driven and research-driven. The typology allows us to evaluate the
varying impact of different consulting activities on universities and firms. First, contrary
to fears expressed by some observers, we contend that consulting has limited impact on
the direction of academic research towards more ‘applied’ themes. Secondly, we argue
that consulting is positively associated with academics’ research productivity for
research-driven and, to a lesser extent, commercialization-driven consulting while
involvement in opportunity-driven consulting has a negative impact. Thirdly, we
differentiate between different roles of academic consulting for firms.
Commercialization-driven consulting allows firms to accelerate development along a
chosen path of in-sourced technology. Research-driven consulting is used mainly by
large firms in research-intensive sectors for externally informing and validating the
direction of their R&D and long-term product development efforts. Opportunity-driven
consulting is commissioned mainly by new technology-based firms seeking to
compensate for lacking expertise or equipment.
19
Future empirical research, apart from testing our propositions, could investigate whether
academics engage in several of these consulting activities simultaneously or
successively during their career. While junior faculty may appreciate the additional
income generated by opportunity-driven consulting, senior faculty may engage more in
research-driven consulting within their wider research network.
As for practical implications, our analysis suggests universities should look more
closely at what type of consulting activities they promote. While commercialization and
research-driven consulting are likely to enhance research productivity, opportunity-
driven consulting activities might not do so. Particularly universities with high
ambitions for academic excellence could therefore gain from differentiating between
different types of consulting activities. In turn, particularly research-intensive firms
using technology based on ‘Pasteur’ disciplines are likely to benefit from academic
consulting as this is where the interests of both parties are best aligned.
Finally, there are implications for science and technology policy. The trade-off between
some types of consulting and high research productivity suggests a dual strategy in
terms of promoting industry involvement for academics. While opportunity-driven
consulting will be less interesting to highly research-productive universities, it might
make policy sense to promote it within less research-oriented universities. For the
economy as a whole, this constitutes the volume segment of making university-
generated knowledge available to a broader audience of firms, without compromising
curiosity-driven research.
Acknowledgements: A previous version was presented at the Academy of Management
Meeting Annual Meeting 2008 in Philadelphia. We gratefully appreciate comments by
John Bessant, Julian Birkinshaw, Pablo d’Este, David Gann, Pietro Micheli, Andy
20
Neely, Stephen Pavelin and two anonymous reviewers. Research was carried out as part
of the ‘Innovation and Productivity Grand Challenge’ (IPGC) programme. Funding
provided by the UK Engineering and Physical Sciences Research Council (EPSRC) and
the Economic and Social Research Council (ESRC) through the Advanced Institute of
Management Research (AIM).
References
Abramson, H. N., Encarnação, J., Reid, P. P., Schmoch, U. (Eds.), 1997. Technology
transfer systems in the United States and Germany: lessons and perspectives.
Washington, National Acad. Press.
Ács, Z. J., Audretsch, D., Braunerhjelm, P., Carlsson, B., 2004. The missing link: the
knowledge filter and entrepreneurship in endogenous growth. London, Centre
for Economic Policy Research.
Adams, J. D., Chiang, E. P., Starkey, K., 2001. Industry-university cooperative research
centers. The Journal of Technology Transfer 26 (1 - 2), 73-86.
Agrawal, A., 2006. Engaging the inventor: Exploring licensing strategies for university
inventions and the role of latent knowledge. Strategic Management Journal 27
(1), 63-79.
Agrawal, A., Henderson, R. M., 2002. Putting patents in context: Exploring knowledge
transfer from MIT. Management Science 48 (1), 44-60.
Behrens, T. R., Gray, D. O., 2001. Unintended consequences of cooperative research:
impact of industry sponsorship on climate for academic freedom and other
graduate student outcome. Research Policy 30 (2), 179-199.
Bercovitz, J., Feldman, M., 2006. Entrepreneurial universities and technology transfer:
A conceptual framework for understanding knowledge-based economic
development. Journal of Technology Transfer 31 (1), 175-188.
Blumenthal, D., Gluck, M., Louis, K. S., Stoto, M. A., Wise, D., 1986. University-
industry research relationships in biotechnology - implications for the university.
Science 232 (4756), 1361-1366.
21
Bollinger, L., Hope, K. and Utterback, J. M., 1983. A review of literature and
hypotheses on new technology-based firms. Research Policy 12(1): 1-14.
Boyd, E. A., Bero, L. A., 2000. Assessing faculty financial relationships with industry:
a case study. JAMA 284, 2209-2214.
Boyer, C. M., Lewis, D. R., 1984. Faculty consulting: responsibility or promiscuity?
The Journal of Higher Education 55 (5), 637-659.
Brooks, H., Randazzese, L., 1999. University-industry relations: the next four years and
beyond, in: Branscomb, L., Keller, J. (Eds.), Investing in innovation: Creating a
research and innovation policy that works. Cambridge (MA), MIT Press, pp.
361–399.
Cohen, S. B., Florida, R., Coe, W. R., 1994. University-industry partnerships in the US.
Pittsburgh, Carnegie-Mellon University.
Cohen, W. M., Levinthal, D. A., 1990. Absorptive capacity: a new perspective on
learning and innovation. Administrative Science Quarterly 35 (1), 128-152.
Cohen, W. M., Nelson, R. R., Walsh, J. P., 2002. Links and impacts: the influence of
public research on industrial R&D. Management Science 48 (1), 1-23.
D'Este, P., Patel, P., 2007. University-industry linkages in the UK: what are the factors
determining the variety of interactions with industry? Research Policy 36 (9),
1295-1313.
Faulkner, W., Senker, J., 1994. Making sense of diversity: public-private sector research
linkage in three technologies. Research Policy 23 (6), 673-695.
Feller, I., 1999. The American university system as a performer of basic and applied
research, in: Branscomb, L. M., Kodama, F., Florida, R. (Eds.), Industrializing
knowledge: university–industry linkages in Japan and the United States.
Cambridge (MA), MIT Press, pp. 65–101.
Gibbons, M., Johnston, R., 1974. The roles of science in technological innovation.
Research Policy 3 (3), 220-242.
Gittelman, M., Kogut, B., 2003. Does good science lead to valuable knowledge?
Biotechnology firms and the evolutionary logic of citation patterns.
Management Science 49 (4), 366-382.
Godin, B., Gingras, Y., 2000. Impact of collaborative research on academic science.
Science and Public Policy 27, 65-73.
22
Goldfarb, B., Henrekson, M., 2003. Bottom-up versus top-down policies towards the
commercialization of university intellectual property. Research Policy 32 (4),
639-658.
Gulbrandsen, M., Smeby, J.-C., 2005. Industry funding and university professors'
research performance. Research Policy 34 (6), 932-950.
HEFCE, 2007, Higher education business and community interaction survey 2006.
London: Higher Education Funding Council for England.
Hicks, D., Hamilton, K., 1999. Does university-industry collaboration adversely affect
university research? Issues in Science and Technology 15 (4), 74-75.
Howells, J., Nedeva, M., Georghiou, L., 1998, Industry-academic links in the UK.
PREST, University of Manchester.
Jensen, R., Thursby, M., 2001. Proofs and prototypes for sale: the licensing of
university inventions. American Economic Review 91 (1), 240-259.
Kilduff, M., 2006. Editors comments: publishing theory. Academy of Management
Review 31 (2), 252-255.
Kreiner, K. and Schultz, M., 1993. Informal collaboration in R&D. The formation of
networks across organizations. Organization Studies 14 (2): 189-209.
Laursen, K. and Salter, A., 2004. Searching high and low: what types of firms use
universities as a source of innovation? Research Policy 33 (8): 1201-1215.
Lee, Y. S., 1996. 'Technology transfer' and the research university: A search for the
boundaries of university-industry collaboration. Research Policy 25 (6), 843-
863.
Louis, K. S., Blumenthal, D., Gluck, M., Stoto, M. A., 1989. Entrepreneurs in academe:
an exploration of behaviors among life scientists. Administrative Science
Quarterly 34 (1), 110-131.
Mansfield, E., 1991. Academic research and industrial innovation. Research Policy 20,
1-12.
Mansfield, E., 1995. Academic research underlying industrial innovations: sources,
characteristics, and financing. Review of Economics and Statistics 77 (1), 55-65.
Merton, R. K., 1973. The sociology of science. Theoretical and empirical investigations.
University of Chicago Press, Chicago, London.
Meyer-Krahmer, F., Schmoch, U., 1998. Science-based technologies: university-
industry interactions in four fields. Research Policy 27 (8), 835-851.
23
Meyer, M., 2003. Academic entrepreneurs or entrepreneurial academics? Research-
based ventures and public support mechanisms. R&D Management 33 (2), 107-
115.
Murray, F., 2002. Innovation as co-evolution of scientific and technological networks:
exploring tissue engineering. Research Policy 31 (8,9), 1389-1403.
Murray, F., Stern, S., 2007. Do formal intellectual property rights hinder the free flow
of scientific knowledge? An empirical test of the anti-commons hypothesis.
Journal of Economic Behavior and Organization 63 (4), 648-687.
Nelson, R. R., 2004. The market economy, and the scientific commons. Research Policy
33 (3), 455-471.
Patton, C. V., Marver, J. D., 1979. Paid consulting by American academics. Educational
Record 60 (2), 175-184.
Pavitt, K., 1984. Sectoral patterns of technical change: towards a taxonomy and a
theory. Research Policy 13 (6), 343-373.
Pavitt, K., 2005. Innovation processes, in: Fagerberg, J., Mowery, D., Nelson, R. (Eds.),
Oxford Handbook of Innovation. Oxford, Oxford University Press, pp. 86-147.
Perkmann, M., Walsh, K., 2007. University-industry relationships and open innovation:
towards a research agenda. International Journal of Management Reviews 9 (4),
259-280.
Rebne, D., 1989. Faculty consulting and scientific knowledge - a traditional university-
industry linkage. Educational Administration Quarterly 25 (4), 338-357.
Rosenberg, N., 1992. Scientific instrumentation and university research. Research
Policy 21 (4), 381-390.
Rosenberg, N., 1994. Exploring the black box: technology, economics, and history.
Cambridge; New York, Cambridge University Press.
Santoro, M. D., Chakrabarti, A. K., 2002. Firm size and technology centrality in
industry-university interactions. Research Policy 31 (7), 1163-1180.
Salter, A. J. and Martin, B. R., 2001. The economic benefits of publicly funded basic
research: a critical review. Research Policy 30 (3), 509-532.
Schmoch, U., 1999. Interaction of universities and industrial enterprises in Germany
and the United States - a comparison. Industry and Innovation 6 (1), 51-68.
Shane, S. A., 2004. Academic entrepreneurship: university spinoffs and wealth creation.
Cheltenham ; Northampton, MA, Edward Elgar.
24
Slaughter, S., Leslie, L. L., 1997. Academic capitalism: politics, policies and the
entrepreneurial university. Baltimore, MD, Johns Hopkins University Press.
Stephan, P. E., Levin, S. G., 1992. Striking the mother lode in science: the importance
of age, place, and time. Oxford, Oxford University Press.
Stokes, D. E., 1997. Pasteur's quadrant: basic science and technological innovation.
Washington, D.C., Brookings Institution Press.
Thursby, J., Fuller, A., Thursby, M., 2007. US faculty patenting: inside and outside the
university. NBER Working Paper 13256.
Thursby, J. G., Thursby, M. C., 2002. Who is selling the ivory tower? Sources of
growth in university licensing. Management Science 48 (1), 90-104.
Thursby, J. G., Thursby, M. C., 2004. Are faculty critical? Their role in university-
industry licensing. Contemporary Economic Policy 22 (2), 162-178.
Thursby, J. G. A., Jensen, R. A., Thursby, M. C. A., 2001. Objectives, characteristics
and outcomes of university licensing: a survey of major US universities. Journal
of Technology Transfer 26 (1), 59-72.
Tidd, J., 2001, Innovation management in context: environment, organization and
performance, in, International Journal of Management Reviews, Vol. 3:
Blackwell Publishing Limited.
Van De Ven, A. H., Johnson, P. E., 2006. Knowledge for theory and practice. Academy
of Management Review 31 (4), 802-821.
Van Looy, B., Ranga, M., Callaert, J., Debackere, K., Zimmermann, E., 2004.
Combining entrepreneurial and scientific performance in academia: towards a
compounded and reciprocal Matthew-effect? Research Policy 33 (3), 425-441.
Webster, A., 1994. University-corporate ties and the construction of research agendas.
Sociology 28 (1), 123-142.
Zucker, Lynne G., Darby, Michael R., 1996. Star scientists and institutional
transformation: patterns of invention and innovation in the formation of the
biotechnology industry. Proceedings of the National Academy of Sciences 93
(23), 12709-12716.
Zucker, L. G., Darby, M. R., Armstrong, J., 1998. Geographically localized knowledge:
spillovers or markets? Economic Inquiry 36 (1), 65-86.
25
26
Zucker, L. G., Darby, M. R., Armstrong, J. S., 2002. Commercializing knowledge:
university science, knowledge capture, and firm performance in biotechnology.
Management Science 48 (1), 138-153.
TABLE 1
Models of Academic Consulting
Motive Relationship Type of knowledge
Opportunity-driven Income Short-term Openly accessible,
specialist expertise
Commercialization
-driven
Technology
development
Project-bound Tacit expertise
Research-driven Research
opportunities
Long-term,
embedded
Strategic judgment,
know-what
27
Shift away from
basic research
Impact on academic
productivity
Contribution Benefiting firms
Opportunity-driven no – Problem-solving, hired
expert labour
Small technology-based firms
Commercialization-
driven
no ๐ Enabling and
accelerating
development
Licensees (up-start technology companies and
existing companies)
Research-driven no + ‘Windows’ on new
technologies, strategic
advice
Large, science and technology-intensive firms
28
Impacts of different types of academic consulting
TABLE 2
29